Learning Variable-Length Markov Models of Behavior |
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Authors: | Aphrodite Galata Neil Johnson David Hogg |
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Affiliation: | School of Computing, University of Leeds, Leeds, LS2 9JT, United Kingdomf1 |
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Abstract: | In recent years there has been an increased interest in the modeling and recognition of human activities involving highly structured and semantically rich behavior such as dance, aerobics, and sign language. A novel approach for automatically acquiring stochastic models of the high-level structure of an activity without the assumption of any prior knowledge is presented. The process involves temporal segmentation into plausible atomic behavior components and the use of variable-length Markov models for the efficient representation of behaviors. Experimental results that demonstrate the synthesis of realistic sample behaviors and the performance of models for long-term temporal prediction are presented. |
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Keywords: | Abbreviations: modeling behaviorAbbreviations: behavior predictionAbbreviations: behavior synthesisAbbreviations: variable-length Markov modelsAbbreviations: Markov modelsAbbreviations: N-gramsAbbreviations: hidden Markov modelsAbbreviations: probabilistic finite state automataAbbreviations: statistical grammarsAbbreviations: computer animation |
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